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首页> 外文期刊>Canadian Journal of Soil Science >Estimating soil water content from surface digital image gray level measurements under visible spectrum
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Estimating soil water content from surface digital image gray level measurements under visible spectrum

机译:在可见光谱下通过表面数字图像灰度测量估算土壤含水量

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Determining soil water content (SWC) is fundamental for soil science, ecology and hydrology. Many methods are put forward to measure SWC, such as drying soil samples, neutron probes, time domain reflectrometry (TDR) and remote sensing. Sampling and drying soil is time-consuming. A neutron probe cannot determine SWC of surface soil accurately because neutrons escape when they are emitted near soil surface and TDR is, to some extent, influenced by soil salinity and temperature. Remote sensing can obtain SWC over a large area across a range of temporal and spatial scales. Complicated terrain and atmospheric conditions often make remote sensing data unreliable. Determining SWC from surface gray level (GL) measurements in the visible spectrum may have advantages over other remote sensing techniques, because surface soil images can be easily acquired by digital cameras, even with complicated landforms and meteorological conditions. However, few studies use this method, and further work is required to develop the ability of visible spectrum digital images to accurately estimate SWC. In this study, 42 soil samples were collected to investigate the relationship between surface GL and SWC using computer processing of soil surface images acquired by a digital camera. After establishing an equation to describe this relationship, a simple calibrated model was developed. The calibrated model was validated by an independent set of 48 soil samples. The results indicate that surface GL was sensitive to SWC. There was a negative linear relationship between surface GL and the square of SWC for the 42 calibration soil samples (correlation coefficients > 0.91). Based on this negative relationship, a model was established to estimate SWC from surface GL. The results of model validation showed the estimated SWCs by surface GL were very close to the measured SWCs (correlation coefficient =0.99 at a significant level of 0.01). Generally, SWC could be estimated from surface GL for a given soil, and the model could be used to quickly and accurately determineg SWC from surface GL measurements
机译:确定土壤含水量(SWC)是土壤科学,生态学和水文学的基础。提出了许多测量SWC的方法,例如干燥土壤样品,中子探针,时域反射计(TDR)和遥感。采样和干燥土壤很费时间。中子探针无法准确确定表面土壤的SWC,因为中子在土壤表面附近发射时会逸出,并且TDR在一定程度上受土壤盐分和温度的影响。遥感可以在一定范围的时间和空间尺度上在大范围内获得SWC。复杂的地形和大气条件通常会使遥感数据不可靠。从可见光谱中的表面灰度(GL)测量值确定SWC可能优于其他遥感技术,因为即使具有复杂的地貌和气象条件,也可以通过数码相机轻松获取表面土壤图像。但是,很少有研究使用这种方法,并且需要进一步的工作来开发可见光谱数字图像准确估计SWC的能力。在这项研究中,收集了42个土壤样品,以利用计算机处理的数码相机获取的土壤表面图像来研究表面GL和SWC之间的关系。在建立描述这种关系的方程式之后,开发了一个简单的校准模型。通过一组独立的48个土壤样品对校准后的模型进行了验证。结果表明表面GL对SWC敏感。对于42个校准土壤样品,表面GL与SWC的平方之间呈负线性关系(相关系数> 0.91)。基于此负关系,建立了一个模型来从表面GL估算SWC。模型验证的结果表明,通过表面GL估算的SWC与测量的SWC非常接近(相关系数= 0.99,显着水平为0.01)。通常,可以从给定土壤的表面GL估算SWC,并且可以使用该模型从表面GL测量值快速准确地确定SWC。

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